激光技术, 2018, 42 (5): 666, 网络出版: 2018-09-11   

加权联合降维的深度特征提取与分类识别算法

Deep feature extraction and classification recognition algorithm based on weighting and dimension reduction
作者单位
曲阜师范大学 物理工程学院, 曲阜 273165
引用该论文

冯玮, 王玉德, 张磊. 加权联合降维的深度特征提取与分类识别算法[J]. 激光技术, 2018, 42(5): 666.

FENG Wei, WANG Yude, ZHANG Lei. Deep feature extraction and classification recognition algorithm based on weighting and dimension reduction[J]. Laser Technology, 2018, 42(5): 666.

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冯玮, 王玉德, 张磊. 加权联合降维的深度特征提取与分类识别算法[J]. 激光技术, 2018, 42(5): 666. FENG Wei, WANG Yude, ZHANG Lei. Deep feature extraction and classification recognition algorithm based on weighting and dimension reduction[J]. Laser Technology, 2018, 42(5): 666.

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